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Research on a Real-time Computer Network Trend Analysis Algorithm Based on Dynamic Data Flow under the Background of Big Data

机译:基于大数据背景下基于动态数据流的实时计算机网络趋势分析算法研究

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With the continuous development of information technology, the Internet technology and computing technology are constantly improving and developing, and the demand of users is constantly increasing in this process, so the network specification is particularly important in this context. Traditional behavior identity is mostly based on a static model, which has a strong dependence on sample eigenvalues, but lacks flexibility and adaptability to individual users’ behavior habits. In this paper, the data stream is segmented and fitted based on the total least square method, and the traditional curve analysis algorithm and online data segmentation are combined and improved. The variable sliding window algorithm is used to realize the reasonable segmentation of the data stream and improve the accuracy of trend analysis. Experimental results show that the algorithm has high recognition rate and good adaptability to users.
机译:随着信息技术的不断发展,互联网技术和计算技术不断提高和开发,并且在该过程中,用户的需求不断增加,因此网络规范在这种情况下尤为重要。 传统的行为标识主要基于静态模型,这对样本特征值具有很强的依赖性,但缺乏对个人用户的行为习惯的灵活性和适应性。 在本文中,基于总量的至少方形方法分段并配合数据流,并且组合和改进了传统的曲线分析算法和在线数据分段。 可变滑动窗口算法用于实现数据流的合理分割,提高趋势分析的准确性。 实验结果表明,该算法具有高识别率和对用户的良好适应性。

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